Multimodal Feature Fusion Recognition of Modulated Signals Based on Image and Waveform Domain

Changbo Hou, Guowei Liu, Lijie Hua, Yun Lin
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Abstract

Communication signal modulation type recognition has a wide range of applications in electronic reconnaissance equipment such as electronic support, electronic intelligence and radar threat warning systems. The common modulation feature recognition algorithms usually only focus on one feature, ignoring the complementarity between different features. Considering the importance of feature fusion, this paper proposes a feature fusion method based on deep learning model. Extracting the image domain features and I/Q waveform domain features of the signal through suitable deep learning models, then combine the extracted features and use Kernel Principal Component Analysis (KPCA) to reduce the dimensionality of the joint features, finally obtain the classification recognition result in the classifier. Simulation experiments show that the signal recognition method based on feature fusion can have a higher recognition rate at low SNR than when only single features are considered, which can reach 93.15% at -2 dB. Keywords-Multi-signal; Signal recognition; Feature fusion; KPCA
基于图像和波形域的调制信号多模态特征融合识别
通信信号调制型识别在电子支援、电子情报和雷达威胁预警系统等电子侦察设备中有着广泛的应用。常见的调制特征识别算法通常只关注一个特征,而忽略了不同特征之间的互补性。考虑到特征融合的重要性,本文提出了一种基于深度学习模型的特征融合方法。通过合适的深度学习模型提取信号的图像域特征和I/Q波形域特征,然后将提取的特征结合起来,利用核主成分分析(KPCA)对联合特征进行降维,最后在分类器中得到分类识别结果。仿真实验表明,基于特征融合的信号识别方法在低信噪比下的识别率高于仅考虑单一特征时的识别率,在-2 dB时识别率可达93.15%。Keywords-Multi-signal;信号识别;特征融合;KPCA
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